Voice Spoofing Detection Corpus for Single and Multi-order Audio Replays
Roland Baumann, Khalid Mahmood Malik, Ali Javed, Andersen Ball,, Brandon Kujawa, Hafiz Malik

TL;DR
This paper introduces a new voice spoofing detection dataset that includes first and second-order replay attacks, addressing limitations of existing datasets and aiding in the development of more robust anti-spoofing methods for modern voice-controlled devices.
Contribution
The paper presents the first publicly available dataset with multi-order replay recordings, including microphone array characteristics, for improved evaluation of spoofing detection algorithms.
Findings
Dataset includes first and second-order replay samples.
Includes audio from fifteen different speakers.
Enables evaluation of multi-order replay attack detection.
Abstract
The evolution of modern voice controlled devices (VCDs) in recent years has revolutionized the Internet of Things, and resulted in increased realization of smart homes, personalization and home automation through voice commands. The introduction of VCDs in IoT is expected to give emergence of new subfield of IoT, called Multimedia of Thing (MoT). These VCDs can be exploited in IoT driven environment to generate various spoofing attacks including the replays. Replay attacks are generated through replaying the recorded audio of legitimate human speaker with the intent of deceiving the VCDs having speaker verification system. The connectivity among the VCDs can easily be exploited in IoT driven environment to generate a chain of replay attacks (multi-order replay attacks). Existing spoofing detection datasets like ASVspoof and ReMASC contain only the first-order replay recordings against…
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